The LMIT: Light-mediated minimally-invasive theranostics in oncology

Yingwei Fan*, Shuai Liu, Enze Gao, Rui Guo, Guozhao Dong, Yangxi Li, Tianxin Gao, Xiaoying Tang, Hongen Liao

*Corresponding author for this work

Research output: Contribution to journalReview articlepeer-review

4 Citations (Scopus)

Abstract

Minimally-invasive diagnosis and therapy have gradually become the trend and research hotspot of current medical applications. The integration of intraoperative diagnosis and treatment is a development important direction for real-time detection, minimally-invasive diagnosis and therapy to reduce mortality and improve the quality of life of patients, so called minimally-invasive theranostics (MIT). Light is an important theranostic tool for the treatment of cancerous tissues. Light-mediated minimally-invasive theranostics (LMIT) is a novel evolutionary technology that integrates diagnosis and therapeutics for the less invasive treatment of diseased tissues. Intelligent theranostics would promote precision surgery based on the optical characterization of cancerous tissues. Furthermore, MIT also requires the assistance of smart medical devices or robots. And, optical multimodality lay a solid foundation for intelligent MIT. In this review, we summarize the important state-of-the-arts of optical MIT or LMIT in oncology. Multimodal optical image-guided intelligent treatment is another focus. Intraoperative imaging and real-time analysis-guided optical treatment are also systemically discussed. Finally, the potential challenges and future perspectives of intelligent optical MIT are discussed.

Original languageEnglish
Pages (from-to)341-362
Number of pages22
JournalTheranostics
Volume14
Issue number1
DOIs
Publication statusPublished - 2024

Keywords

  • image-guided surgery
  • intelligent theranostics
  • intraoperative imaging
  • minimally-invasive diagnosis and therapy
  • optical diagnosis and therapy

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